Lukket

Deep learning mini project

Deep Residual Networks with Range normalization for text classification.

I need a deep learning model to identify important medical concepts mentions from clinical documents, and classify them into personal identifying information (PII) and the four SOAP predefined categories, such as disease, symptoms, treatment etc. We propose the use of sentence embeddings, with deep Residual Networks with with residual connections and range normalization simultaneously, and transfer learning to improve the accuracy of the model. This requires an expert in deep learning especially using neural networks.

Evner: Maskinoplæring

Se mere: mini project using java script, accounting mini project, servlet mini project, machine learning project suggestions, machine learning projects for final year, machine learning project ideas 2018, machine learning projects for students, machine learning projects ideas, machine learning interesting projects, machine learning projects in python, machine learning project ideas 2017, simple mini project 8085, free mini project html using javascript, mini project stationery shop, mini project abstract java, mini project php students, mini project report implementation rsa algorithm using java, demo mini project, mini project names web designs, mini project excel employee salary details

Om arbejdsgiveren:
( 34 bedømmelser ) faridabad, India

Projekt ID: #17991016

3 freelancere byder i gennemsnit $279 på dette job

dinhfreedom

Hello, there, I am very happy to put my bid on your project. I am an expert of deep learning algorithm and senior software developer, so I am interested in and confident to do this project. I hope to discuss everyth Flere

$150 AUD in 3 dage
(33 bedømmelser)
5.8
hammadabbasi01

Hi, Review my profile  5 Years of experience as BI/ETL Developer and Oracle Business Intelligence Certified professional. Adept in preparing data for analysis, Creating dashboards deploying dashboards on server Flere

$555 AUD in 10 dage
(0 bedømmelser)
0.0
$133 AUD in 7 dage
(0 bedømmelser)
0.0